AI on your company’s real data: where to start
How to connect AI to your company’s real data — with permissions, context and privacy — to query in natural language and generate real value.
Read articleWhat predictive analytics is, how it differs from descriptive analytics, what it needs to work, and which business cases it solves with the most impact.

Most dashboards answer "what happened?". Useful, but it looks in the rear-view mirror. Predictive analytics goes further and answers "what is likely to happen?", letting the company act earlier instead of reacting later.
Predictive analytics uses historical data, statistics and machine learning to estimate the probability of future events: which customer will churn, what demand there will be, which operation is suspicious or which machine will fail. It does not foresee the future: it estimates probabilities to reduce uncertainty.
Predictive analytics does not work on just any data. It requires enough quality history, a clear definition of the target to predict, and a process to bring predictions into operations. Without reliable, governed data, models produce misleading estimates that lead to worse decisions than intuition.
Some of the most profitable uses are demand forecasting, churn prediction, default detection, predictive maintenance and price optimisation. In all, the value is not the prediction itself but the action it enables: restock in time, retain a customer or prevent a failure.
The value of predictive analytics is not in predicting, but in the action the prediction enables.
Predictive analytics uses historical data to estimate what is likely to happen, a step beyond descriptive (what happened) towards prescriptive (what to do). It needs quality history, a clear target and a path to action — and its value is anticipating, not predicting for its own sake. It works with probabilities, not certainties.
A descriptive dashboard explains what already happened; predictive analytics estimates what will likely happen, enabling earlier action.
Enough quality historical data, a clear target to predict and a process to turn predictions into action.
No. It works with probabilities. Its value is reducing uncertainty to decide better, not offering absolute certainty.
Predictive estimates what will happen; prescriptive goes further and recommends what to do about that prediction.
Demand forecasting, churn prediction, default detection, predictive maintenance and price optimisation are among the most profitable.
Because without reliable, governed history, models produce misleading estimates that can lead to worse decisions than intuition.
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